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Adaptive Screen Content Image Enhancement Strategy using Layer-based Segmentation

机译:基于层的分割的自适应屏幕内容图像增强策略

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The ubiquitous screen content images (SCIs) play a significant role in various scenarios currently. However, most SCIs captured by consumer devices are frequently corrupted with distortions, especially contrast distortion. Unlike the natural images, SCIs are composed of text, graphics and natural scene pictures so that traditional image enhancement methods are not suitable for these compound images. Therefore, we innovatively proposed an adaptive strategy for enhancing SCIs in this paper. Firstly, we devised a segmentation method to divide SCI into text and pictorial regions. Next, the famous guided image filter (GIF) with big and small kernel sizes served as unsharpness masking for processing different regions adaptively. For verifying performance, the proposed method was tested on recently prevalent SCI datasets including SIQAD, and Webpage Dataset. Experimental results indicate that the proposed approach outperforms state-of-the-art methods in most SCIs with flat background.
机译:普遍存在的屏幕内容图像(SCI)在目前的各种场景中起着重要作用。然而,由消费者设备捕获的大多数SCI经常被扭曲,尤其是对比度失真。与自然图像不同,SCI由文本,图形和自然场景图片组成,使得传统的图像增强方法不适用于这些复合图像。因此,我们创新地提出了一种在本文中加强SCI的自适应策略。首先,我们设计了分割方法将SCI分成文本和图形区域。接下来,具有大小内核尺寸的着名引导图像滤波器(GIF)用作不适应地处理不同区域的遮蔽掩模。为了验证性能,在最近普遍的普遍存在的SCI数据集上测试了所提出的方法,包括SIQAD和网页数据集。实验结果表明,拟议的方法在大多数SCI中占据了最先进的方法。

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